CAPE-Lab - Computer-Aided Process Engineering Laboratory, Department of Industrial Engineering, University of Padova, via Marzolo 9, 35131 Padova, Italy.
GlaxoSmithKline (GSK), Park Road, Ware SG12 0DP, United Kingdom.
Int J Pharm. 2022 Feb 25;614:121435. doi: 10.1016/j.ijpharm.2021.121435. Epub 2021 Dec 31.
In oral solid dosage production through direct compression powder lubrication must be carefully selected to facilitate the manufacturing of tablets without degrading product manufacturability and quality (e.g. dissolution). To do so, several semi-empirical models relating compression performance to process operating conditions have been developed. Among them, we consider an extension of the Kushner and Moore model (Kushner and Moore, 2010, International Journal Pharmaceutics, 399:19) that is useful for the purpose, but requires an extensive experimental campaign for parameters identification. This implies the preparation and compression of multiple powder blends, each one with a different lubrication extent. In turn, this translates into a considerable consumption of Active Pharmaceutical Ingredient (API), and into time-consuming experiments. We tackled this issue by proposing a novel model-based design of experiments (MBDoE) approach, which minimizes the number of optimal blends for model calibration, while obtaining statistically sound parameters estimates and model predictions. Both sequential and parallel MBDoE configurations were compared. Experimental results involving two placebo blends with different lubrication sensitivity showed that this methodology is able to reduce the experimental effort by 60-70% with respect to the standard industrial practice independently of the formulation considered and configuration (i.e. parallel vs. sequential) adopted.
在口服固体制剂生产中,通过直接压缩粉末润滑必须仔细选择,以促进片剂的制造,而不会降低产品的可制造性和质量(例如,溶解)。为此,已经开发了几种将压缩性能与工艺操作条件相关联的半经验模型。其中,我们考虑了 Kushner 和 Moore 模型(Kushner 和 Moore,2010,国际药学杂志,399:19)的扩展,该模型对于该目的很有用,但需要广泛的实验活动来识别参数。这意味着需要制备和压缩多种粉末混合物,每种混合物的润滑程度都不同。反过来,这又导致了大量活性药物成分(API)的消耗,并导致实验耗时。我们通过提出一种新的基于模型的实验设计(MBDoE)方法来解决这个问题,该方法可以最大限度地减少模型校准所需的最佳混合物数量,同时获得统计学上合理的参数估计值和模型预测值。比较了顺序和并行 MBDoE 配置。涉及两种具有不同润滑敏感性的安慰剂混合物的实验结果表明,无论所考虑的配方和采用的配置(即并行与顺序)如何,该方法都能够将实验工作量减少 60-70%。